Opioid death projections with AI-based forecasts using social media language.
Matthew MateroSalvatore GiorgiBrenda L CurtisLyle H UngarH Andrew SchwartzPublished in: NPJ digital medicine (2023)
Targeting of location-specific aid for the U.S. opioid epidemic is difficult due to our inability to accurately predict changes in opioid mortality across heterogeneous communities. AI-based language analyses, having recently shown promise in cross-sectional (between-community) well-being assessments, may offer a way to more accurately longitudinally predict community-level overdose mortality. Here, we develop and evaluate, TROP (Transformer for Opiod Prediction), a model for community-specific trend projection that uses community-specific social media language along with past opioid-related mortality data to predict future changes in opioid-related deaths. TOP builds on recent advances in sequence modeling, namely transformer networks, to use changes in yearly language on Twitter and past mortality to project the following year's mortality rates by county. Trained over five years and evaluated over the next two years TROP demonstrated state-of-the-art accuracy in predicting future county-specific opioid trends. A model built using linear auto-regression and traditional socioeconomic data gave 7% error (MAPE) or within 2.93 deaths per 100,000 people on average; our proposed architecture was able to forecast yearly death rates with less than half that error: 3% MAPE and within 1.15 per 100,000 people.
Keyphrases
- social media
- chronic pain
- pain management
- cardiovascular events
- mental health
- health information
- healthcare
- autism spectrum disorder
- cross sectional
- risk factors
- big data
- artificial intelligence
- coronary artery disease
- current status
- computed tomography
- magnetic resonance
- cardiovascular disease
- quality improvement
- cancer therapy
- drug delivery
- high intensity
- data analysis